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---
license: mit
datasets:
- sail/regmix-data
- sail/regmix-data-sample
language:
- en
---
# Models Trained with Human Selection
This is a collection of the language models trained using Human selection, each with approximately 1B parameters, trained on different random mixtures of data. This project aims to validate the generalization capabilities of the RegMix approach (https://huggingface.co/papers/2407.01492) from small-scale (e.g., 1M parameters) to large-scale (e.g., 1B parameters) models.
## Key Features
- **Model Size**: 5 separate models trained with different seeds, each with ~1B parameters
- **Training Data**: Human selection (from The Pile paper) data mixtures on the [RegMix-Data](https://huggingface.co/datasets/sail/regmix-data) dataset
- **Purpose**: The Human selection is a strong baseline for our method RegMix
-
## Dataset
The models were trained using the [RegMix-Data](https://huggingface.co/datasets/sail/regmix-data) dataset, which is split into different domains from The Pile dataset.
## Training Hyperparameters
| Hyperparameter | Value |
|:---------------|:------|
| Batch Size | 1M tokens |
| Learning Rate | 4e-4 |
| Minimum Learning Rate | 1e-5 |
| Learning Rate Schedule | Cosine |
| Warmup Ratio | 4% |
| Total Tokens | 25B |
## How to Load a Model
You can load any model using the corresponding branch with the Hugging Face Transformers library:
```python
from transformers import AutoModel, AutoTokenizer
model = AutoModel.from_pretrained("sail/data-mixture-human-1b", revision="seed-1")
tokenizer = AutoTokenizer.from_pretrained("sail/data-mixture-human-1b", revision="seed-1")
```
## Data Mixture
The specific data mixture used for training this 1B model is as follows, which can be also found in [our code](https://github.com/sail-sg/regmix/blob/main/mixture_config/config_1b/human.yaml):
```yaml
train:
train_the_pile_arxiv: 0.1052
train_the_pile_freelaw: 0.0386
train_the_pile_nih_exporter: 0.0052
train_the_pile_pubmed_central: 0.1071
train_the_pile_wikipedia_en: 0.0919
train_the_pile_dm_mathematics: 0.0198
train_the_pile_github: 0.0427
train_the_pile_philpapers: 0.0027
train_the_pile_stackexchange: 0.0929
train_the_pile_enron_emails: 0.0030
train_the_pile_gutenberg_pg_19: 0.0199
train_the_pile_pile_cc: 0.1121
train_the_pile_ubuntu_irc: 0.0074
train_the_pile_europarl: 0.0043
train_the_pile_hackernews: 0.0075
train_the_pile_pubmed_abstracts: 0.0845
train_the_pile_uspto_backgrounds: 0.0420
valid:
valid_the_pile_pile_cc: 1.0
model_name: tinyllama_1_1b
```
> Domain weights will be normalized to make sure their sum is 1.0 for train sets in our code.
## Model Variants
To access different model variants, simply change the `revision` parameter in the `from_pretrained` method to the desired seed (e.g., "seed-2", "seed-3"), and the maxium seed is 5.
## Model Performance
We evaluated each model using [lm-evaluation-harness](https://github.com/EleutherAI/lm-evaluation-harness). The performance metric for each task is the average of 0-shot to 5-shot `accnorm` (accuracy normalized, if available) or `acc` (accuracy) scores.
| Seed | PIQA | LAMBADA | MultiRC | LogiQA | SocialIQA | Winogrande | RACE | OpenBookQA | COPA | HellaSwag | SciQ | ARC Easy | QQP | Average |
|------|------|---------|---------|--------|-----------|------------|------|------------|------|-----------|------|----------|-----|---------|
| 1 | 65.00 | 29.83 | 54.28 | 25.47 | 33.61 | 53.06 | 28.98 | 28.17 | 66.67 | 37.43 | 80.13 | 49.40 | 52.42 | 46.50 |
| 2 | 65.03 | 26.69 | 53.24 | 25.31 | 33.69 | 52.52 | 29.42 | 28.76 | 63.00 | 37.68 | 82.58 | 51.36 | 58.46 | 46.75 |
| 3 | 65.57 | 28.47 | 54.18 | 25.68 | 34.24 | 52.31 | 30.12 | 28.00 | 65.80 | 37.90 | 82.48 | 49.34 | 56.53 | 46.97 |
| 4 | 65.45 | 26.88 | 51.42 | 24.92 | 34.16 | 50.50 | 29.93 | 28.92 | 62.40 | 37.70 | 80.66 | 49.27 | 58.06 | 46.17 |
| 5 | 66.67 | 29.56 | 51.58 | 26.94 | 33.22 | 51.78 | 29.03 | 28.56 | 65.00 | 37.69 | 81.78 | 50.38 | 52.60 | 46.52 |
## Usage Notes
- These models are primarily intended for research purposes.
- Performance may vary depending on the specific task and domain.
## Citation
If you use these models in your research, please cite the RegMix paper:
```
@article{liu2024regmix,
title={RegMix: Data Mixture as Regression for Language Model Pre-training},
author={Liu, Qian and Zheng, Xiaosen and Muennighoff, Niklas and Zeng, Guangtao and Dou, Longxu and Pang, Tianyu and Jiang, Jing and Lin, Min},
journal={arXiv preprint arXiv:2407.01492},
year={2024}
}
```
For more information about the RegMix methodology and its applications, please refer to the [original paper](https://huggingface.co/papers/2407.01492). |